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Total column water vapour measurements from GOME-2 MetOp-A and MetOp-B

机译:来自GOME-2 MetOp-A和MetOp-B的总塔水蒸气测量值

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Knowledge of the total column water vapour (TCWV) global distribution is fundamental for climate analysis and weather monitoring. In this work, we present the retrieval algorithm used to derive the operational TCWV from the GOME-2 sensors aboard EUMETSAT's MetOp-A and MetOp-B satellites and perform an extensive inter-comparison in order to evaluate their consistency and temporal stability. For the analysis, the GOME-2 data sets are generated by DLR in the framework of the EUMETSAT O3M-SAF project using the GOME Data Processor (GDP) version 4.7. The retrieval algorithm is based on a classical Differential Optical Absorption Spectroscopy (DOAS) method and combines a Hsub2/subO and Osub2/sub retrieval for the computation of the trace gas vertical column density. We introduce a further enhancement in the quality of the Hsub2/subO total column by optimizing the cloud screening and developing an empirical correction in order to eliminate the instrument scan angle dependencies. The overall consistency between measurements from the newer GOME-2 instrument on board of the MetOp-B platform and the GOME-2/MetOp-A data is evaluated in the overlap period (December 2012a??June 2014). Furthermore, we compare GOME-2 results with independent TCWV data from the ECMWF ERA-Interim reanalysis, with SSMIS satellite measurements during the full period January 2007a??June 2014 and against the combined SSM/I + MERIS satellite data set developed in the framework of the ESA DUE GlobVapour project (January 2007a??December 2008). Global mean biases as small as ?±0.035 g cmsupa??2/sup are found between GOME-2A and all other data sets. The combined SSM/I-MERIS sample and the ECMWF ERA-Interim data set are typically drier than the GOME-2 retrievals, while on average GOME-2 data overestimate the SSMIS measurements by only 0.006 g cmsupa??2/sup. However, the size of these biases is seasonally dependent. Monthly average differences can be as large as 0.1 g cmsupa??2/sup, based on the analysis against SSMIS measurements, which include only data over ocean. The seasonal behaviour is not as evident when comparing GOME-2 TCWV to the ECMWF ERA-Interim and the SSM/I+MERIS data sets, since the different biases over land and ocean surfaces partly compensate each other. Studying two exemplary months, we estimate regional differences and identify a very good agreement between GOME-2 total columns and all three data sets, especially for land areas, although some discrepancies (bias larger than ?±0.5 g cmsupa??2/sup) over ocean and over land areas with high humidity or a relatively large surface albedo are observed.
机译:了解总塔水蒸气(TCWV)的全球分布对于气候分析和天气监控至关重要。在这项工作中,我们提出了一种检索算法,该算法用于从EUMETSAT的MetOp-A和MetOp-B卫星上的GOME-2传感器中提取可操作的TCWV,并进行广泛的比较,以评估其一致性和时间稳定性。为了进行分析,DLM在EUMETSAT O3M-SAF项目的框架中使用GOME数据处理器(GDP)版本4.7生成了GOME-2数据集。该检索算法基于经典的差分光吸收光谱(DOAS)方法,并结合了H 2 O和O 2 检索用于计算痕量气体垂直柱密度。我们通过优化云筛选和开发经验校正以消除仪器扫描角度的依赖性,进一步提高了H 2 O总柱的质量。在重叠期间(2012年12月至2014年6月),评估了MetOp-B平台上的新型GOME-2仪器与GOME-2 / MetOp-A数据之间的总体一致性。此外,我们将GOME-2结果与来自ECMWF ERA-Interim重新分析的独立TCWV数据,2007年1月至2014年6月整个期间的SSMIS卫星测量以及该框架中开发的SSM / I + MERIS卫星数据集进行了比较ESA DUE GlobVapour项目的日期(2007年1月至2008年12月)。在GOME-2A和所有其他数据集之间发现了小至±±0.035 g cm a ?? 2 的全局平均偏差。合并的SSM / I-MERIS样本和ECMWF ERA-Interim数据集通常比GOME-2检索要干燥,而平均而言,GOME-2数据仅高估了SSMIS测量值0.006 g cm 。但是,这些偏差的大小取决于季节。根据针对SSMIS测量的分析得出的月平均差异可能高达0.1 g cm a ?? 2 ,其中仅包括海洋数据。当将GOME-2 TCWV与ECMWF ERA-Interim和SSM / I + MERIS数据集进行比较时,季节性行为并不那么明显,因为陆地和海洋表面的不同偏差部分相互抵消。通过研究两个典型的月份,我们估计了地区差异,并确定了GOME-2总列与所有三个数据集之间的良好一致性,特别是对于陆地区域,尽管存在一些差异(偏差大于±±0.5 g cm·a? 2 )在高湿度或相对较大的地表反照率的海洋和陆地上观察到。

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